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Parametric study of rock cutting with SMART(*)CUT picks

机译:使用SMART(*)CUT截齿进行岩石切割的参数研究

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The severe abrasive wear of the current cemented tungsten carbide (WC) tools is a "bottleneck" that limits the usage of machinery in hard rock mines. To address this issue, a revolutionary thermally stable diamond composite (TSDC) based cutting tool, also called Super Material Abrasive Resistant Tool (SMART(*)CUT) was developed by CSIRO. Before this novel tool is employed for practical rock cutting, the effects of the cutting parameters on the performance of the SMART(*)CUT picks must be determined and the cutting forces of the picks have to be estimated as they directly affect the capability and efficiency of the selected cutterhead and hence the excavation machine. In this study, rock cutting tests based on Taguchi's L25 orthogonal array were conducted to analyze the cutting parameters. The signal-to-noise (S/N) ratios and the analysis of variance (ANOVA) were applied to investigate the effects of depth of cut, attack angle, spacing and cutting speed on mean cutting and normal forces during the rock cutting process. Empirical models for predicting the cutting forces on SMART(*)CUT picks were developed using multiple linear regression (MLR) and artificial neural network (ANN) techniques. Parametric combinations for minimizing the cutting forces and the statistical significance of process factors were successfully determined by using the Taguchi technique. Good prediction capabilities with acceptable errors were achieved by the developed MLR and ANN models. However, the ANN models offered better accuracy and less deviation. (C) 2016 Elsevier Ltd. All rights reserved.
机译:当前硬质合金碳化钨(WC)工具的严重磨损是一个“瓶颈”,限制了硬岩矿山中机械的使用。为了解决这个问题,CSIRO开发了一种革命性的基于热稳定金刚石复合材料(TSDC)的切削工具,也称为超级材料耐磨工具(SMART(*)CUT)。在将这种新颖的工具用于实际岩石切割之前,必须确定切割参数对SMART(*)CUT截齿性能的影响,并且必须估计截齿的切削力,因为它们直接影响性能和效率选定的刀盘和挖土机。在这项研究中,进行了基于田口L25正交阵列的岩石切割测试,以分析切割参数。应用信噪比(S / N)和方差分析(ANOVA)来研究切削深度,攻角,间距和切削速度对岩石切削过程中平均切削力和法向力的影响。使用多元线性回归(MLR)和人工神经网络(ANN)技术开发了预测SMART(*)CUT截齿切削力的经验模型。使用Taguchi技术成功确定了用于最小化切削力和工艺因素的统计意义的参数组合。通过开发的MLR和ANN模型,可以实现具有可接受误差的良好预测能力。但是,人工神经网络模型提供了更好的准确性和更少的偏差。 (C)2016 Elsevier Ltd.保留所有权利。

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